Cascaded Diffusion Models for High Fidelity Image Generation

Abstract

We show that cascaded diffusion models are capable of generating high fidelity images on the class-conditional ImageNet generation benchmark, without any assistance from auxiliary image classifiers to boost sample quality. A cascaded diffusion model comprises a pipeline of multiple diffusion models that generate images of increasing resolution, beginning with a standard diffusion model at the lowest resolution, followed by one or more super-resolution diffusion models that successively upsample the image and add higher resolution details. We find that the sample quality of a cascading pipeline relies crucially on conditioning augmentation, our proposed method of data augmentation of the lower resolution conditioning inputs to the super-resolution models. Our experiments show that conditioning augmentation prevents compounding error during sampling in a cascaded model, helping us to train cascading pipelines achieving FID scores of 1.48 at 64x64, 3.52 at 128x128 and 4.88 at 256x256 resolutions, outperforming BigGAN-deep, and classification accuracy scores of 63.02% (top-1) and 84.06% (top-5) at 256x256, outperforming VQ-VAE-2.

Cite

Text

Ho et al. "Cascaded Diffusion Models for High Fidelity Image Generation." Journal of Machine Learning Research, 2022.

Markdown

[Ho et al. "Cascaded Diffusion Models for High Fidelity Image Generation." Journal of Machine Learning Research, 2022.](https://mlanthology.org/jmlr/2022/ho2022jmlr-cascaded/)

BibTeX

@article{ho2022jmlr-cascaded,
  title     = {{Cascaded Diffusion Models for High Fidelity Image Generation}},
  author    = {Ho, Jonathan and Saharia, Chitwan and Chan, William and Fleet, David J. and Norouzi, Mohammad and Salimans, Tim},
  journal   = {Journal of Machine Learning Research},
  year      = {2022},
  pages     = {1-33},
  volume    = {23},
  url       = {https://mlanthology.org/jmlr/2022/ho2022jmlr-cascaded/}
}